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Prediction of the Foreign Exchange Market Using Classifying Neural Network Doug Moll Chad Zeman.

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Presentation on theme: "Prediction of the Foreign Exchange Market Using Classifying Neural Network Doug Moll Chad Zeman."— Presentation transcript:

1 Prediction of the Foreign Exchange Market Using Classifying Neural Network Doug Moll Chad Zeman

2 The Problem Using neural networks, can we predict future foreign exchange rates to profit from short- term fluctuations?

3 Outline Project History Project Proposal Data Set MPL Results PNN Results

4 Project History Senior Seminar Used Trajan for regression networks Attempted to predict direction & movement size Less than desirable results

5 Proposal Classification of Up or Down movement Continue to use Trajan Maintain same biases to compare to previous research Minimize time to learn new tool

6 Data Set Inputs (1994 – 2003) Percent change of CA/US exchange rate Interest differential of short term interest rates (CA – US) Lagged Values

7 Exchange Rate data 94-03

8 Percent Change Model

9 Data Set Equalize training cases Same number of Up examples as Down for each of the three data periods Training Verification Testing

10 Trajan Algorithm User Defined Settings Inputs & Outputs Training, Verification, Test data splits Network Type

11 Trajan Algorithm Automatically Determined Settings Network Complexity (# of hidden nodes)

12 Trajan Algorithm Randomly builds networks Trains using backpropagation Utilize cross-verification techniques Evaluate networks based on verification error Cross-reference with out-of-sample test data

13 Results – MLP - Daily 16 inputs 20 hidden nodes 1 output 0.3 momentum 0.1 learning rate 50 epochs

14 Results – MLP - Daily Data SetPerformance Training58.41% Verification53.59% Testing53.59%

15 Results – MLP - Weekly 16 inputs 22 hidden nodes 1 output 0.3 momentum 0.1 learning rate 4 epochs

16 Results – MLP - Weekly Data SetPerformance Training52.73% Verification62.50% Testing55.47%

17 Probabilistic Neural Networks Finite deterministic network Three layers

18 PNN Example – Training Example A Exchange Rate Interest Rate 1.35 2.5% Input Layer A Target Output = Up Pattern Layer Output Layer Up Down

19 Pattern Layer Receives input vector Calibrates Gaussian bell

20 PNN Example – Training Example A Exchange Rate Interest Rate 1.35 2.5% Input Layer A 100% Target Output = Up Pattern Layer Output Layer Up Down A 1.35 2.5% 1

21 PNN Example – Training Example B Exchange Rate Interest Rate 1.40 2.7% Input Layer A 100% Target Output = Down Pattern Layer Output Layer Up Down A 1.35 2.5% B 1.40 2.7% 1

22 PNN Example – Out-of-Sample Exchange Rate Interest Rate 1.39 2.7% Input Layer A 80% Pattern Layer Output Layer Up Down A 1.35 2.5% B 1.40 2.7%.40.10 20%

23 Results – PNN - Daily 16 inputs 1224 hidden nodes 2 outputs

24 Results – PNN - Daily Data SetPerformance Training54.82% Verification51.14% Testing51.96%

25 Results – PNN - Weekly 16 inputs 256 hidden nodes 2 outputs

26 Results – PNN - Weekly Data SetPerformance Training77.73% Verification54.69% Testing57.03%

27 Conclusions Predicting foreign exchange market is a tough problem PNN vs. MLP Weekly vs. Daily data


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